Knowledge Management & Discovery Lab
KMD stands for "Knowledge Management and Discovery" .
The KMD Lab is part of the department Technical and Business Information Systems (ITI) .
The KMD Lab was established in February 2003.
In the KMD lab, we develop and apply data mining methods for dynamic environments, with particular emphasis on:
- Machine Learning methods for streams and time series with gaps – prediction and feature contribution
- Parsimonious usage of data and features – cost-aware active feature acquisition methods
- Design of human-understandable solutions
Our application areas are:
- Medical Mining I : Treatment prediction, phenotyping in medical research
- Medical Mining II : Human interaction with mHealth apps
- Experiments I : Analysis of participant behavior in experimental settings
- Experiments II: Experiment design and analysis of human behavior in human-machine interaction
More on our research can be found here .
We are currently involved in the TACTIC graduate school (2024-2027), in the RheumaMining project (2024-2027) and in the AICOLAB project.
Our research is reflected in our teaching curriculum, which is built around the topic of data mining: Students learn underpinnings of data mining in all bachelor courses we offer. In the mandatory courses ITO and WMS of the Bachelor Business Informatics degree, we focus on mining for business applications. In the Recommenders course, we elaborate on the mining methods for static and stream recommenders.
In the courses Data Mining I (two variants, one for bachelor degrees, one for master degrees), students learn fundamentals on algorithms, model evaluation and data preparation. In Data Mining II, students learn learning methods for timestamped data. In the seminars, team projects and individual projects, students learn to design and apply mining and machine learning methods in realistic applications, and they get involved in our research - in team projects and individual projects. Our courses can be found under Study .